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Assessment of Parameter Uncertainty in Plant Growth Model Identification

机译:植物生长模型识别参数不确定性评估

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For the parametric identification of plant growth models, we generally face limited or uneven experimental data, and complex nonlinear dynamics. Both aspects make model parametrization and uncertainty analysis a difficult task. The Generalized Least Squares (GLS) estimator is often used since it can provide estimations rather rapidly with an appropriate goodness-of-fit. However, the confidence intervals are generally calculated based on linear approximations which make the uncertainty evaluation unreliable in the case of strong nonlinearity. A Bayesian approach, the Convolution Particle Filtering (CPF), can thus be applied to estimate the unknown parameters along with the hidden states. In this case, the posterior distribution obtained can be used to evaluate the uncertainty of the estimates. In order to improve its performance especially with stochastic models and in the case of rare or irregular experimental data, a conditional iterative version of the Convolution Particle Filtering (ICPF) is proposed. When applied to the Log Normal Allocation and Senescence model (LNAS) with sugar beet data, the two CPF related approaches showed better performance compared to the GLS method. The ICPF approach provided the most reliable estimations. Meanwhile, two sources of the estimation uncertainty were identified: the variance generated by the stochastic nature of the algorithm (relatively small for the ICPF approach) and the residual variance partly due to the noise models.
机译:对于植物生长模型的参数识别,我们通常面临有限或不均匀的实验数据,以及复杂的非线性动力学。两个方面都使模型参数化和不确定性分析一项艰巨的任务。通常使用广泛的最小二乘(GLS)估计器,因为它可以以适当的适合性迅速地提供估计。然而,通常基于线性近似来计算置信区间,这在强烈的非线性的情况下使不确定的评估不可靠。因此,贝叶斯方法,卷积粒子滤波(CPF)可以应用于估计未知参数以及隐藏状态。在这种情况下,所获得的后部分布可用于评估估计的不确定性。为了提高其性能,特别是随机模型,并且在稀有或不规则的实验数据的情况下,提出了一种卷积颗粒滤波(ICPF)的条件迭代版本。当用甜菜数据应用到日志正态分配和衰老模型(LNA)时,与GLS方法相比,两个相关方法显示出更好的性能。 ICPF方法提供了最可靠的估计。同时,鉴定了两个估计不确定性的源:由算法的随机性质(ICPF方法相对较小)产生的差异,部分原因是由于噪声模型。

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